Prd
Prd是一款data方向的AI技能,核心价值是Generate high-quality Product Requirements Documents (PRDs) for software systems and AI-powered features,可用于解决开发者在data领域的实际问题,帮助用户提升效率、自动化重复任务或优化工作流。
Generate high-quality Product Requirements Documents (PRDs) for software systems and AI-powered features. Includes executive summaries, user stories, technical specifications, and risk analysis.
mkdir -p ./skills/prd && curl -sfL https://raw.githubusercontent.com/github/awesome-copilot/main/skills/prd/SKILL.md -o ./skills/prd/SKILL.md Run in terminal / PowerShell. Requires curl (Unix) or PowerShell 5+ (Windows).
Skill Content
# Product Requirements Document (PRD)
Overview
Design comprehensive, production-grade Product Requirements Documents (PRDs) that bridge the gap between business vision and technical execution. This skill works for modern software systems, ensuring that requirements are clearly defined.
When to Use
Use this skill when:
- Starting a new product or feature development cycle
- Translating a vague idea into a concrete technical specification
- Defining requirements for AI-powered features
- Stakeholders need a unified "source of truth" for project scope
- User asks to "write a PRD", "document requirements", or "plan a feature"
---
Operational Workflow
Phase 1: Discovery (The Interview)
Before writing a single line of the PRD, you **MUST** interrogate the user to fill knowledge gaps. Do not assume context.
**Ask about:**
- **The Core Problem**: Why are we building this now?
- **Success Metrics**: How do we know it worked?
- **Constraints**: Budget, tech stack, or deadline?
Phase 2: Analysis & Scoping
Synthesize the user's input. Identify dependencies and hidden complexities.
- Map out the **User Flow**.
- Define **Non-Goals** to protect the timeline.
Phase 3: Technical Drafting
Generate the document using the **Strict PRD Schema** below.
---
PRD Quality Standards
Requirements Quality
Use concrete, measurable criteria. Avoid "fast", "easy", or "intuitive".
# Vague (BAD)
- The search should be fast and return relevant results.
- The UI must look modern and be easy to use.
# Concrete (GOOD)
+ The search must return results within 200ms for a 10k record dataset.
+ The search algorithm must achieve >= 85% Precision@10 in benchmark evals.
+ The UI must follow the 'Vercel/Next.js' design system and achieve 100% Lighthouse Accessibility score.---
Strict PRD Schema
You **MUST** follow this exact structure for the output:
1. Executive Summary
- **Problem Statement**: 1-2 sentences on the pain point.
- **Proposed Solution**: 1-2 sentences on the fix.
- **Success Criteria**: 3-5 measurable KPIs.
2. User Experience & Functionality
- **User Personas**: Who is this for?
- **User Stories**: `As a [user], I want to [action] so that [benefit].`
- **Acceptance Criteria**: Bulleted list of "Done" definitions for each story.
- **Non-Goals**: What are we NOT building?
3. AI System Requirements (If Applicable)
- **Tool Requirements**: What tools and APIs are needed?
- **Evaluation Strategy**: How to measure output quality and accuracy.
4. Technical Specifications
- **Architecture Overview**: Data flow and component interaction.
- **Integration Points**: APIs, DBs, and Auth.
- **Security & Privacy**: Data handling and compliance.
5. Risks & Roadmap
- **Phased Rollout**: MVP -> v1.1 -> v2.0.
- **Technical Risks**: Latency, cost, or dependency failures.
---
Implementation Guidelines
DO (Always)
- **Define Testing**: For AI systems, specify how to test and validate output quality.
- **Iterate**: Present a draft and ask for feedback on specific sections.
DON'T (Avoid)
- **Skip Discovery**: Never write a PRD without asking at least 2 clarifying questions first.
- **Hallucinate Constraints**: If the user didn't specify a tech stack, ask or label it as `TBD`.
---
Example: Intelligent Search System
1. Executive Summary
**Problem**: Users struggle to find specific documentation snippets in massive repositories.
**Solution**: An intelligent search system that provides direct answers with source citations.
**Success**:
- Reduce search time by 50%.
- Citation accuracy >= 95%.
2. User Stories
- **Story**: As a developer, I want to ask natural language questions so I don't have to guess keywords.
- **AC**:
- Supports multi-turn clarification.
- Returns code blocks with "Copy" button.
3. AI System Architecture
- **Tools Required**: `codesearch`, `grep`, `webfetch`.
4. Evaluation
- **Benchmark**: Test with 50 common develope
🎯 Best For
- Technical writers
- API documentation teams
- Developers scaffolding new projects
- Prototype builders
- UI designers
💡 Use Cases
- Generating JSDoc/TSDoc comments
- Writing README files for new projects
- Bootstrapping React components
- Creating API route handlers
📖 How to Use This Skill
- 1
Install the Skill
Copy the install command from the Terminal tab and run it. The SKILL.md file downloads to your local skills directory.
- 2
Load into Your AI Assistant
Open Claude or GitHub Copilot and reference the skill. Paste the SKILL.md content or use the system prompt tab.
- 3
Apply Prd to Your Work
Provide context for your task — paste source material, describe your audience, or share existing work to guide the AI.
- 4
Review and Refine
Edit the AI output for accuracy, tone, and completeness. Add human insight where the AI lacks context.
❓ Frequently Asked Questions
Does it follow my documentation style?
Most documentation skills respect existing style. Provide a style guide or example in your prompt.
Can I customize the generated output?
Yes — modify the skill's prompt instructions to match your project conventions and coding style.
Does this work with Figma?
Some design skills integrate with Figma plugins. Check the Works With section for supported tools.
How do I install Prd?
Copy the install command from the Terminal tab and run it. The skill downloads to ./skills/prd/SKILL.md, ready to use.
Can I customize this skill for my team?
Absolutely. Edit the SKILL.md file to add team-specific instructions, examples, or workflows.
⚠️ Common Mistakes to Avoid
Auto-generating without reviewing
AI documentation can contain inaccuracies. Always verify technical accuracy.
Using generated code without understanding
Understand what generated code does before shipping it to production.
Skipping usability testing
AI-generated designs should be validated with real users before development.
Ignoring data quality
AI analysis inherits all data quality issues — profile your data first.